kanban-mcp

kanban-mcp

Transforms Claude into an autonomous development team with architect, agent, and QA roles, enabling automated sprint execution, task management, and continuous learning.

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Claude Kanban MCP

npm version

Turn Claude into a self-organizing dev team. One command spawns an architect, agents, and QA - they plan, build, review, and learn from mistakes. Automatically.

/kanban-sprint "implement user auth"

That's it. Watch your feature get built.


Why This Exists

AI agents are powerful but chaotic. They forget context, repeat mistakes, and have no structure. This MCP gives them:

  • Memory - 3-tier learning system that remembers what worked and what didn't
  • Structure - Kanban workflow with roles, sprints, and QA gates
  • Accountability - Iteration tracking with max attempts before escalation
  • Coordination - Multiple agents work in parallel without stepping on each other

The result? Claude stops being a chatbot and starts being a team.


60-Second Setup

# Install
claude mcp add kanban -- bunx @simonblanco/kanban-mcp

# Add workflow skills (optional but recommended)
git clone https://github.com/SimonBlancoE/kanban-mcp ~/.claude/kanban-mcp
ln -s ~/.claude/kanban-mcp/.claude/skills/kanban-* ~/.claude/skills/

Open http://localhost:3456 to watch your agents work in real-time.


What You Get

Autonomous Dev Cycles

/kanban-sprint "add dark mode"

The system automatically:

  1. Architect breaks it into tasks with acceptance criteria
  2. Agents claim tasks and iterate until criteria are met
  3. QA reviews with structured feedback (not just "looks good")
  4. Learning captures patterns so mistakes don't repeat

Import Issues, Assign Automatically

Got a backlog in Forgejo or GitHub? Import it directly:

kanban_import_issues:
  repo: "myorg/myproject"
  issues: [... from your git forge MCP ...]
  autoAssign: true  # Matches issue labels to agent skills

The architect analyzes each issue, matches it to the best agent based on skills, and creates a sprint. When tasks complete, sync the solution back and close the issue.

Agents That Learn

Every rejection teaches something:

Tier 1: Task Memory    → "This specific task needed X"
Tier 2: Agent Memory   → "This agent struggles with testing"
Tier 3: Project Memory → "Always validate at API boundaries"

New agents inherit project lessons. Your codebase conventions get documented automatically.

Visual Verification (Browser Integration)

Frontend tasks get real verification, not just "trust me, it works":

# Agent takes screenshot of their implementation
bun run $PAI_DIR/skills/Browser/Tools/Browse.ts screenshot http://localhost:3000/feature /tmp/verify.png

# QA verifies the actual rendered output
bun run $PAI_DIR/skills/Browser/Tools/Browse.ts verify http://localhost:3000/feature ".expected-element"
  • Agents must visually verify before submitting frontend work
  • QA rejects with category: "ui" or category: "no-verification" if visual proof is missing
  • Screenshots are reviewed, not just code

Requires the PAI Browser Skill for visual verification capabilities.

Real-Time Dashboard

Kanban Board

  • Live WebSocket updates as agents work
  • Click any task for full iteration history
  • Activity feed shows exactly what's happening
  • Escalation warnings when tasks exceed iteration limits

The Roles

Role Does What
Architect Plans sprints, defines acceptance criteria, assigns agents, resolves blockers
Agent Claims tasks, iterates until done, submits work for QA
QA Reviews with structured feedback (category, severity, suggestions)

Agents can't see each other's tasks. Architects see everything. QA only sees work pending review.


Key Features

Feature What It Solves
Acceptance Criteria No more "is this done?" - clear success conditions
Max Iterations Prevents infinite loops - escalates stuck tasks
Structured QA Feedback Not "rejected" but "logic error, high severity, try X"
Visual Verification Agents and QA verify frontend work with real screenshots
Capability Matching Register agent skills, auto-assign by issue labels
Issue Sync Import from Forgejo/GitHub, close when done
Session Continuity Agents resume where they left off across context windows
Health Checks Detect stale tasks, bottlenecks, overloaded agents

Workflow Commands

Command What Happens
/kanban-sprint "feature" Full autonomous dev cycle
/kanban-architect Manual planning and oversight
/kanban-agent Work on assigned tasks
/kanban-qa Review pending work
/kanban-review-loop Background health monitoring

36 MCP Tools

Full API for task management, sprints, iterations, learning, agent capabilities, and issue sync:

Tasks: create, update, move, delete, assign, set criteria Sprints: create, track, iterate, complete Iterations: start, submit, get context, log activity QA: list pending, approve, reject with feedback Learning: get insights, add lessons, add conventions Agents: register skills, list capabilities, match to tasks Issues: import from forge, sync status, mark complete Health: stats, health check, escalations, session management


Installation Options

Via Claude Code (recommended):

claude mcp add kanban -- bunx @simonblanco/kanban-mcp

Global install:

bun add -g @simonblanco/kanban-mcp
kanban-mcp

From source:

git clone https://github.com/SimonBlancoE/kanban-mcp
cd kanban-mcp && bun install && bun run src/index.ts

Manual config (~/.config/claude/settings.json):

{
  "mcpServers": {
    "kanban": {
      "command": "bunx",
      "args": ["@simonblanco/kanban-mcp"]
    }
  }
}

Architecture

┌─────────────────────────────────────────────────────────────┐
│                    SPRINT LIFECYCLE                         │
│                                                             │
│  ┌──────────┐    ┌──────────┐    ┌──────────┐              │
│  │ PLANNING │───►│ EXECUTING│───►│ REVIEWING│              │
│  │          │    │          │    │          │              │
│  │ Architect│    │  Agents  │    │    QA    │              │
│  │ defines  │    │ iterate  │    │ feedback │              │
│  │ criteria │    │ until    │    │ or       │              │
│  └──────────┘    │ done     │    │ approve  │              │
│                  └────┬─────┘    └────┬─────┘              │
│                       │               │                     │
│                       └───────────────┘                     │
│                         Loop until                          │
│                         approved or                         │
│                         maxIterations                       │
└─────────────────────────────────────────────────────────────┘

┌─────────────────────────────────────────────────────────────┐
│                    3-TIER LEARNING                          │
│                                                             │
│  Task Memory ──► Agent Memory ──► Project Memory            │
│  (what worked)   (patterns)       (conventions)             │
│                                                             │
│  Mistakes bubble up. Lessons flow down to new agents.       │
└─────────────────────────────────────────────────────────────┘

Data Storage

SQLite database at ./data/kanban.db with automatic migrations. Your board survives restarts and upgrades cleanly.

Table Purpose
tasks All tasks with iteration history
sprints Sprint goals and progress
sessions Agent session continuity
learning_* Agent patterns and project lessons
agent_capabilities Registered skills for matching
issue_imports External issue tracking

License

MIT


Built for Claude Code. Stop prompting. Start shipping.

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